Physiological Stress Level Estimation Based on Smartphone Logs

Naoki Yamamoto, Keiichi Ochiai, Akiya Inagaki, Yusuke Fukazawa, Masatoshi Kimoto, Kazuki Kiriu, Kouhei Kaminishi, J. Ota, Tsukasa Okimura, Yuri Terasawa, Takaki Maeda
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引用次数: 14

Abstract

Recently, inferring the state of people’s mental health via passive mobile sensing has attracted significant attention. Previous studies have used the self-assessed stress levels as the ground truth; however, these are subjective measures. In this study, we use a physiologically-assessed stress metric to minimize the effect of participant subjectivity and further estimate it using behavioral features based on the smartphone usage logs. We initially requested the study participants (39 participants) to attach heart rate sensors for 8 hours per day and simultaneously collected continuous heart rate data and smartphone logs for 42 days. Further, we divided the participants into four types via clustering using the behavioral features derived from their smartphone sensor logs and trained each model via supervised learning using the heart rate data as the ground truth. Our results exhibit that the proposed method is more accurate (71%) as compared to the baseline method (54%). This demonstrates that physiologically-assessed stress levels can be estimated based on the implicit features that are gathered from the smartphone logs.
基于智能手机日志的生理应激水平估计
近年来,通过被动移动传感来推断人们的心理健康状况引起了人们的广泛关注。以前的研究使用自我评估的压力水平作为基本事实;然而,这些都是主观的衡量标准。在本研究中,我们使用生理评估的压力度量来最小化参与者主观性的影响,并使用基于智能手机使用日志的行为特征进一步估计其影响。我们最初要求研究参与者(39名参与者)每天佩戴心率传感器8小时,同时收集42天的连续心率数据和智能手机日志。此外,我们使用从智能手机传感器日志中获得的行为特征,通过聚类将参与者分为四种类型,并使用心率数据作为基础真实值,通过监督学习训练每种模型。我们的结果表明,与基线方法(54%)相比,所提出的方法更准确(71%)。这表明,可以根据从智能手机日志中收集的隐含特征来估计生理评估的压力水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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